[Online]Distance-Learning EEG Understanding via Imbalance-Aware Stacked Trees and Subject-Wise Generalization Analysis Across Students

Distance-Learning EEG Understanding via Imbalance-Aware Stacked Trees and Subject-Wise Generalization Analysis Across Students
ID:163 Submission ID:323 View Protection:ATTENDEE Updated Time:2025-12-23 13:28:59 Hits:334 Online

Start Time:2025-12-29 14:45 (Asia/Amman)

Duration:15min

Session:[S4] Track 4: Dedicated Technologies for Wireless Networks Track 6: Signal Processing for Wireless Communications Track 8: Communication and Networking Technologies for Smart Agriculture » [S4] Track 4: Dedicated Technologies for Wireless NetworksTrack 6: Signal Processing for Wireless CommunicationsTrack 8: Communication and Networking Technologies for Smart Agriculture

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Abstract
Distance-learning platforms increasingly seek objective EEG-based markers of lecture comprehension, yet robust, imbalance-aware models on real datasets remain scarce. Using the Kaggle “EEG data / Distance learning environment” corpus (8 students, 14 Emotiv Epoc X channels, 84 tabular features/segment, ≈21% “not understood”), we propose IASTE, an Imbalance-Aware Stacked Tree Ensemble combining gradient boosting, RUSBoost, and bagged trees via leakage-free out-of-fold stacking and a logistic meta-learner. Under a stratified 70/15/15 train–validation–test split, with hyperparameters selected solely by minority-class F1 on validation, IASTE attains 97.3% test accuracy, macro-F1 = 0.959, and F1₀ (“not understood”) = 0.936. This improves macro-F1 by ≈1–2 percentage points and F1₀ by up to ≈1.5 points over strong baselines including Random Forest, RUSBoost, SVM, LSTM, BiLSTM, and BiLSTM+attention. Subject-wise analysis shows per-student accuracies in the range 0.968–0.980, versus ≈0.956–0.964 for tree and deep baselines, indicating genuine cross-subject generalization. Ablations confirm that removing stacking, imbalance handling, or F1₀-based selection systematically degrades minority-class F1 and macro-F1, while performance remains stable across the explored tree-depth and NumLearningCycles grid. By enabling objective, data-driven monitoring of lecture comprehension in distance-learning environments, our approach supports more inclusive and effective digital education.
Keywords
EEG, Distance learning, Lecture understanding, Class imbalance, Stacked ensembles, Subject-wise generalization.
Speaker
Mohamadreza Khosravi
Researcher Shiraz University of Medical Sciences

Submission Author
Khosro Rezaee Meybod University
Mohamadreza Khosravi Shiraz University of Medical Sciences
Ali Rachini Holy Spirit University of Kaslik
Zakaria Che Muda Surveying INTI-IU University
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